Sub-band processing complexity reduction

ABSTRACT

A sub-band processing system that reduces computational complexity and memory requirements includes a processor and a local or distributed memory. Logic stored in the memory partitions a frequency spectrum of bins into a smaller number of sub-bands. The logic enables a lossy compression by designating a magnitude and a designated or derived phase of each bin in the frequency spectrum as representative. The logic renders a lossless compression by decompressing the lossy compressed data and providing lost data based on original spectral relationships contained within the frequency spectrum.

PRIORITY CLAIM

This application claims the benefit of priority from U.S. Provisional Application No. 61/148,661, filed Jan. 30, 2009, which is incorporated by reference.

BACKGROUND OF THE INVENTION

1. Technical Field

This disclosure relates to sub-band processing, and more particularly to systems that reduce computational complexity and memory requirements.

2. Related Art

Wideband networks receive and transmit data through radio frequency signals through inbound and outbound transmissions. The networks may transmit data, voice, and video simultaneously through multiple channels that may be distinguished in frequency. Some wideband networks are capable of high speed operations and may have a considerably higher throughput than some narrowband networks. The increased bandwidth of these networks may increase the processing loads and memory requirements of other applications.

Frequency domain based adaptive filtering, for example, may be computationally intensive because it translates a time domain signal into multiple frequency components that are separately processed. Translating a time domain signal into multiple frequency components increases the computational complexity and memory usage of some systems when a signal's bandwidth increases. As the number of frequency components increase with bandwidth, the computational load and the required memory increase.

SUMMARY

A sub-band processing system that reduces computational complexity and memory requirements includes a processor and a local or a distributed memory. Logic stored in the memory partitions a frequency spectrum of bins into sub-bands. The logic enables a lossy compression by designating a magnitude and a designated or derived phase of each bin in the frequency spectrum as representative. The logic renders a lossless compression by decompressing the lossy compressed data and providing lost data based on original spectral relationships contained within the frequency spectrum.

Other systems, methods, features and advantages will be, or will become, apparent to one with skill in the art upon examination of the following figures and detailed description. It is intended that all such additional systems, methods, features and advantages be included within this description, be within the scope of the invention, and be protected by the following claims.

BRIEF DESCRIPTION OF THE DRAWINGS

The system may be better understood with reference to the following drawings and description. The components in the figures are not necessarily to scale, emphasis instead being placed upon illustrating the principles of the invention. Moreover, in the figures, like referenced numerals designate corresponding parts throughout the different views.

FIG. 1 is a non-overlapping frequency compression of an uncompressed frame.

FIG. 2 is a band-like overlapping frequency compression of an uncompressed frame.

FIG. 3 is non-overlapping compression showing a phase selection.

FIG. 4 is an uncompressed spectrum.

FIG. 5 is an exemplary rotation of bin 5 to the phase of bin 4.

FIG. 6 is an exemplary illustration of band 3.

FIG. 7 is an exemplary illustration of a processed band 3

FIG. 8 is an exemplary restoration of bins from the exemplary processed band 3.

FIG. 9 is an exemplary sub-band processing system.

DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

Due to improvements in transmission rates and device resolutions, networks are providing multi-media, multi-point, and multiple transmission rates for a variety of services. To reduce computational loads and memory requirements, a sub-band processing system processes data such that, after it is compressed and decompressed it is restored to its original format. The system may compress video, sound, text, code, and/or numeric data such that little or no data is lost after a bin or file is decompressed. While the data may contain more information than may be heard or seen (e.g., perceived by a user), some systems preserve the original data (or a representative data set) while compressing and decompressing operating data through a lossy compression. After further (optional) processing (by an ancillary device or system) the sub-band processing system reconstructs and restores the data. The restored data may maintain the relative magnitude and phase of the original data. The restored data may match the original relationships (e.g., relative magnitudes and phases) frequency-for-frequency.

The sub-band processing system analysis may occur on frequency domain characteristics. To derive frequency domain properties, the signal may be broken into intervals though a multiplier function (retained in a local or a distributed computer readable medium) or multiplier device that multiplies the signal by a “window” function or a “frame” of fixed duration. To minimize spectral distortion, smooth window functions (such as Hann, Hamming, etc. retained in the local or the distributed computer readable medium) or a window filter may be used for the short-time spectral analysis. A time-to-frequency transform device, a Discrete Fourier Transform (DFT) device, or a Fast Fourier Transform (FFT) device may transform (or decompose) the short-time based signals into a complex spectrum. The spectrum may be separated into bins of magnitude and phase data or substantially equivalent complex (e.g. real and imaginary) data. A sub-band (or band) may be represented by a single bin of magnitude and phase spectra, or a collection of consecutive or successive bins represented by a common or single magnitude and phase spectra. Table 1 shows representative characteristics of an exemplary FFT device.

TABLE 1 Parameters Sample rate 8 11.025 16 22.05 32 44.1 (kHz) FFT length (N) 256 256 512 512 1024 1024 Number of 129 129 257 257 513 513 useful output bins (R) Hz/bin 31.25 43.07 31.25 43.07 31.25 43.07 At a sample rate of about 8 kHz, an FFT device may transform the time domain signal into about 256 bins. Due to the complex symmetry, the FFT device may yield about 129 useful bins (e.g., 256/2+1). Each bin may represent a frequency resolution of about 31.25 Hz (e.g., 8 kHz/256). The frequency resolution of other sample rates (e.g., 16 kHz and 32 kHz) may be maintained by changing the FFT length. For example, at 16 kHz, the FFT length may be about double the FFT length of the 8 kHz sample rate. At 32 kHz, the FFT length may be about double the FFT length of the 16 kHz sample rate.

In some systems, the magnitude and phase spectra may be obtained from one or more signal processors that execute a Discrete Fourier Transform (DFT) stored in a local or a distributed memory. The output of the DFT may be represented by X(k).

$\begin{matrix} {{X(k)} = {\sum\limits_{n = 0}^{N - 1}{{x(n)}{\mathbb{e}}^{j\frac{2\pi\;{nk}}{N}}}}} & (1) \end{matrix}$ for k=0 . . . N−1, where

-   k is the frequency index for each bin -   n is the time index for each sample -   N is the length of the DFT (or FFT)

The bins (R) of the FFT (or DFT) device may partitioned into a fewer (or smaller R>=M) number of sub-bands (M). In some applications, the sub-band processing system may reduce M to a lowest possible integer that does not affect the performance or quality of a later process. In these applications, the system may generate a number of sub-bands that minimize perceptual error. The applications may exploit the sensitivity of the human auditory system or other systems that do not detect or process certain frequencies or are affected by certain signal distortions.

A lossy compression may compress the data such that some data is lost when the data is compressed into the sub-bands. Some sub-band processing systems compress 2^(q) bins (q is an integer) into individual sub-bands. Other systems apply a perceptual scale (through a processor or controller, for example) where the bins are grouped into sub-bands that match the frequency selectivity of the human auditory system. The sub-bands may comprise non-overlapping or overlapping frequency regions that account for a selected or critical band (e.g., a frequency bandwidth that may model an auditory filter) or apply a perceptual scale like a single or multiple stage rectangular-like bandwidth filter or filter bank, logarithmic spacing filter or filter bank, Bark filter or filter bank, Mel or Mel-like filters or filter bank. FIGS. 1 and 2, respectively, describe exemplary non-overlapping and band-like overlapping compressions. In each figure the uncompressed bins are shown above the corresponding compressed sub-bands. The compressions divide a variable sequence of uncompressed bins into a substantially equal sequence of compressed sub-bands. A substantially equal gain or a variable gain may be applied to render compressed sub-bands that are substantially flat across the frequency spectrum. Perceptual distortions may be minimized by applying lower compression ratios at lower frequencies while applying higher compression ratios at higher frequencies.

Table 2 describes an exemplary non-overlapping compression scheme in which each sub-band represents 2^(q) bins.

Approximate freq Compression Output sub- range (kHz) Input bin numbers ratio bands #s 0-1  0 . . . 31 1:1  0 . . . 31 1-2  32 . . . 63 2:1 32 . . . 47 2-4  64 . . . 127 4:1 48 . . . 63 4-Nyquist 128 . . . M 8:1 64 . . . xx Other systems may apply a more perceptually based scheme that partitions the frequency spectrum into non-overlapping regions. In this alternative, the compression may be based on an auditory filter estimate. Each sub-band may be approximately equal to a first predetermined frequency band such as ½ ERB (Equivalent Rectangular Bandwidth) for frequencies below about 4 kHz, and a second predetermined frequency band such as 1 ERB for frequencies above about 4 kHz. More aggressive compression schemes may be applied when the level of distortion or artifacts do not affect (or have little affect on) the performance of other systems.

Some systems, such as a system that may divide fifteen bins of the spectrum into five sub-bands (e.g., as shown in FIG. 3) may group sub-bands such that each sub-band is about 0.4 ERB (at a low compression) to about 0.875 (at a high compression) ERB. When there is less processor execution speed the sub-bands may be increased. If there is a need to reduce a processors speed by a millions of instructions per second (MIPS), for example, some systems increase the sub-bands to larger ERB values (e.g., each sub-band may be about 1.25 ERB)

While many lossy compression schemes may be used, the sub-band processing system may select or designate a representative phase for each sub-band. Some sub-band processing system “preserve” or select the phase of a bin within the sub-band that has the lowest frequency (as shown in FIG. 3) within that sub-band. Other systems may select bins near or at the center of the sub-band, and others may select a phase based on other structural, functional, or qualitative measures. An alternative sub-band processing system may derive phase through an average or weighted average (e.g., an averaging filter, a programmable dynamic weighting filter, a perceptual weighting filter, etc.). An average may comprise a logical operation stored in a local or remote central or distributed memory such as an arithmetic mean of the phases within each sub-band. The weights of a weighted average may be based on the phase correlations common to one or all of the bins that comprise one or more sub-bands.

The selected magnitudes, an average magnitude (e.g., an average of bins that makeup a band), peaks in the magnitude spectrum, or a function or algorithm that selects or synthesizes a magnitude of each sub-band may be designated as representative. When a maximum magnitude system is used and a maximum magnitude is detected, the bin containing that magnitude is indexed, stored in memory, and the magnitude is rotated or shifted (e.g., through a phase shifter) to attain the selected or designated phase. A resulting sub-band value may be transformed to a maximum magnitude selected from its constituent bins and the phase of the “preserved” or selected bin (through a rotation through or shift by a phase differential, e.g., beta_(sub-band1), beta_(sub-band2), etc.). In the sub-band processing system, the magnitude, |SBX(m)|, and phase, arg(SBX(m)), for each sub-band may be: SBX(m)=|SBX(m)|, arg(SBX(m))  (2) where |SBX(m)|=max(|X(j _(m))|, |X(j _(m)+1)|, . . . , |X(j _(m) +D _(m)−1)  (3) arg(SBX(m))=arg(X(j _(m)))  (4) h _(m)=arg max(|X(j _(m))|, |X(j _(m)+1)|, . . . , |X(j _(m) +D _(m)−1)|)  (5) for m=0 . . . M−1 and

-   m is the index for each sub-band -   j_(m) is the starting (uncompressed frequency bin) index for     sub-band m, and also the index of the bin whose phase is preserved     for sub-band in -   D_(m) is the number of uncompressed bins that are “compressed” into     sub-band m -   h_(m) is the uncompressed frequency index of the bin that has the     maximum magnitude for sub-band m     In some systems, common bins may be selected from the divided     spectrum to preserve the phase of the sub-bands relative to each     processed frame. In these systems j_(m), and D_(m) may be constant     (e.g., temporally invariant) while h_(m) may change (e.g., time     variant) from one aural or sound frame (or video, sound, text, code,     and/or numeric data) to the next. Such systems may preserve the     phase of the same bin within a sub-band on a frame-by-frame basis     such as for example, always the first bin of a sub-band in each     frame or a common bin of a sub-band in each frame.

FIG. 4 is an uncompressed spectrum of complex vectors representing bins 4, 5, 6 and 7 that comprise an exemplary sub-band 3. In sub-band 3, bin 5 has the largest to magnitude and is therefore designated as representative (e.g., through a peak magnitude detector). Through a pre-selection or a derivation through a device such as a phase detector, the phase of bin 4 is the designated phase. To preserve that phase, the vector representing bin 5 is rotated counter-clockwise or otherwise adjusted to substantially match the phase of bin 4 while maintaining its original maximum magnitude (as shown in FIG. 5). The rotated or adjusted version of bin 5 represents sub-band 3, which effectively attenuates the remaining spectrum within the sub-band (e.g., effectively setting the remaining spectrum to substantially to zero) as shown in FIG. 6. The magnitudes and phases of the sparse spectrum (e.g., the adjusted sub-band spectrum) may be further processed before the spectrum is reconstructed.

By maintaining magnitude and phase spectra through the sparse spectrum, the spectrum may be further processed in the frequency domain (or other domains). Adaptive filtering techniques or devices used by an acoustic echo canceller, noise cancellation, or a beam-former, for example, may process a consistent phase that does not change abruptly from frame to frame. Abrupt phase changes that may be a characteristic of other systems may be identified as an impulse response that causes an acoustic echo canceller to diverge. When divergence occurs, a sub-optimal, reduced, or no echo cancellation may occur due to the mismatch between the filter coefficients and the echo path characteristics. When a divergence is declared, an adaptive filter may require time to achieve a convergence.

When reconstructing the processed spectrum, the original spectral data (or a representative data set or a data set of relative measures) is processed so that little or no data is lost when the decompression is complete. By processing the original spectral data (or the representative data or relative measure data set), the sub-band processing system may achieve a lossless or nearly lossless compression. Some systems may preserve almost the entire original spectrum to avoid generating perceivable artifacts when the spectrum is reconstructed.

An overlap-add synthesis may partially reconstruct the spectrum from the processed sparse spectrum. An overlap-add synthesis may avoid discontinuities in the reconstructed spectrum. For each sub-band, the system rotates the processed sub-band to its original relative phase (or a substantially original relative phase), which is relative to the preserved bin (e.g., through a counter rotation through the phase differential, e.g., beta_(sub-band1), beta_(sub-band2), etc.). For example, if a bin containing the largest magnitude was rotated beta degrees in one direction, then the system rotates the processed sub-band by beta degrees in the opposite direction to restore the peak magnitude bin. With the bin restored, the remaining bins that made up the sub-band are reconstructed by maintaining relative magnitudes and phases of the original spectrum (or representative data or relative measure data set). The magnitude and phase of the remaining reconstructed bins maintain the same relative magnitude and phase relationship with the restored peak magnitude bin, as the original spectral bins had with the original peak magnitude bin. In some alternative systems, frequency-criteria may affect phase reconstruction. In one exemplary system, sub-bands that exceed a predetermined value (e.g., over about 4 kHz), may not maintain relative phase relationships.

Because further processing (e.g., echo cancellation, noise reduction, beam former, signal attenuators, amplifiers, signal modifier, etc.) may alter the magnitude and phase of each sub-band, quantitatively each SBX(m) has been transformed into SBY(m). Equations 6-10 describe how the magnitude and phase for each sub-band may be expanded to its constituent bins. Equation (7) establishes that the magnitude of the restored peak magnitude bin is equal (or may be substantially equal) to the magnitude of the processed sub-band. Equation (8) establishes that the phase of the restored peak magnitude bin maintains substantially the same relative phase relationship measured during the partitioning process. Equations (9) and (10), respectively, establish how the remaining bins may be reconstructed. Once the complex spectrum is restored,

$\begin{matrix} {{{{SBY}(m)} = {{{SBY}(m)}}},{\arg\left( {{SBY}(m)} \right)}} & (6) \\ {{{Y\left( h_{m} \right)}} = {{{SBY}(m)}}} & (7) \\ {{\arg\left( {Y\left( h_{m} \right)} \right)} = {{\arg\left( {{SBY}(m)} \right)} - {\arg\left( {X\left( j_{m} \right)} \right)} + {\arg\left( {X\left( h_{m} \right)} \right)}}} & (8) \\ {{{Y(p)}} = {{{Y\left( h_{m} \right)}} \cdot \frac{{X(p)}}{{X\left( h_{m} \right)}}}} & (9) \\ {{\arg\left( {Y(p)} \right)} = {{\arg\left( {Y\left( h_{m} \right)} \right)} - {\arg\left( {X\left( h_{m} \right)} \right)} + {\arg\left( {X(p)} \right)}}} & (10) \end{matrix}$ for m=0 . . . M−1 and

-   m is the index for each sub-band -   j_(m) is the starting (uncompressed frequency bin) index for     sub-band in, and also the index of the bin whose phase is preserved     for sub-band m -   D_(m) is the number of uncompressed bins that are “compressed” into     sub-band m -   h_(m) is the uncompressed frequency index of the bin that has the     maximum magnitude for sub-band m -   p are the indexes in the range [j_(m), j_(m)+D_(m−)1] that do not     equal h_(m)     a time domain signal may be generated by an Inverse Fourier     Transform device (or function stored in a local or a distributed     memory). If windows were used during system analysis, an overlap-add     function may be used for synthesis.

Assuming original sub-band 3 (of FIG. 6) contained echo and was processed to eliminate or minimize the unwanted or undesired additions (echo), processed sub-band 3 may be somewhat attenuated and rotated as shown in FIG. 7. For example, since bin 5 was designated as representative, it may be restored by rotating sub-band 3 clockwise by beta degrees to maintain the original relative phase to bin 4. The restored bin 5 maintains a new attenuated (or adjusted) magnitude. The remaining bins are then scaled and rotated to maintain their original relative phase and magnitude relationships to the restored bin as shown in FIG. 8.

Until the spectrum is restored, the original spectrum (or the representative data set) may be retained in a computer readable medium or memory so that the original relative magnitude and phase relationships may be maintained or restored in the decompressed spectrum. This retention potentially reduces audible artifacts that may be introduced by a compression scheme.

The system, methods, and descriptions described may be programmed in one or more controllers, devices, processors (e.g., signal processors). The processors may comprise one or more central processing units that supervise the sequence of micro-operations that execute the instruction code and data coming from memory (e.g., computer readable medium) that generate, support, and/or complete an operation, compression, or signal modifications. The dedicated applications may support and define the functions of the special purpose processor or general purpose processor that is customized by instruction code (and in some applications may be resident to vehicles). In some systems, a front-end processor may perform the complementary tasks of gathering data for a processor or program to work with, and for making the data and results available to other processors, controllers, or devices.

The systems, methods, and descriptions may program one or more signal processors or may be encoded in a signal bearing storage medium, a computer-readable medium, or may comprise logic 902 stored in a memory that may be accessible through an interface and is executable by one or more processors 904 as shown in FIG. 9 (in FIG. 9, N comprises an integer). Some signal-bearing storage medium or computer-readable medium comprise a memory that is unitary or separate (e.g., local or remote) from a device, programmed within a device, such as one or more integrated circuits, or retained in memory and/or processed by a controller or a computer. If the descriptions or methods are performed by software, the software or logic may reside in a memory resident to or interfaced to one or more processors, devices, or controllers that may support a tangible or visual communication interface (e.g., to a display), wireless communication interface, or a wireless system.

The memory may retain an ordered listing of executable instructions in a processor, device, or controller accessible medium for implementing logical functions. A logical function may be implemented through digital circuitry, through source code, or through analog circuitry. The software may be embodied in any computer-readable medium or signal-bearing medium, for use by, or in connection with, an instruction executable system, apparatus, and device, resident to system that may maintain persistent or non-persistent connections. Such a system may include a computer system, a processor-based system, or another system that includes an input and output interface that may communicate with a publicly accessible or privately accessible distributed network through a wireless or tangible communication bus through a public and/or proprietary protocol.

A “computer-readable storage medium” “machine-readable medium,” “propagated-signal” medium, and/or “signal-bearing medium” may comprise a medium that stores, communicates, propagates, or transports software or data for use by or in connection with an instruction executable system, apparatus, or device. The machine-readable medium may selectively be, but not limited to, an electronic, magnetic, optical, electromagnetic, infrared, or semiconductor system, apparatus, device, or propagation medium. A non-exhaustive list of examples of a machine-readable medium would include: an electrical connection having one or more wires, a portable magnetic or optical disk, a volatile memory, such as a Random Access Memory (RAM), a Read-Only Memory (ROM), an Erasable Programmable Read-Only Memory (EPROM or Flash memory), or an optical fiber. A machine-readable medium may also include a tangible medium, as the software may be electronically stored as an image or in another format (e.g., through an optical scan), then compiled, and/or interpreted or otherwise processed. The processed medium may then be stored in a computer and/or machine memory.

While various embodiments of the invention have been described, it will be apparent to those of ordinary skill in the art that many more embodiments and implementations are possible within the scope of the invention. Accordingly, the invention is not to be restricted except in light of the attached claims and their equivalents. 

What is claimed is:
 1. A system comprising: a first logic stored in a computer-readable medium and executable by a processor that partitions and stores a frequency spectrum of bins of real and imaginary data into a smaller number of sub-bands; a second logic stored in the computer-readable medium and executable by the processor that executes a lossy compression that compresses a designated magnitude of one bin in each sub-band that is representative of that sub-band and a designated phase of one bin in each sub-band that is representative of that sub-band, such that magnitude data and phase data of the frequency spectrum is not maintained by the lossy compression; and a third logic stored in the computer-readable medium and executable by the processor that renders a lossless compression by decompressing lossy compressed data rendered by the second logic and providing magnitude data and phase data not maintained by the lossy compression based on original spectral relationships contained within the frequency spectrum stored in the computer-readable medium.
 2. The system of claim 1 where the real and imaginary data comprise magnitude and phase spectra.
 3. The system of claim 1 where the designated magnitude comprises a designated peak magnitude.
 4. The system of claim 1 where the designated magnitude comprises an average magnitude.
 5. The system of claim 1 where the designated phase of at least one bin in at least one of the sub-bands is different from an original phase of the at least one bin comprising the designated magnitude.
 6. The system of claim 1 where the second logic processes a plurality of frames of data and designates a same bin in each sub-band as a representative phase for each frame of data the system processes.
 7. The system of claim 1 where the second logic processes a plurality of frames of data and designates a first bin in each sub-band as a representative phase for each frame of data the system processes.
 8. The system of claim 1 where the second logic processes a plurality of frames of data and designates a common bin in each sub-band as a representative phase for each frame of data the system processes.
 9. The system of claim 1 where the sub-bands comprise a single bin and a plurality of successive bins of real and imaginary data.
 10. The system of claim 1 further comprising a multiplier device that multiples the frequency spectrum by a window function before the frequency spectrum is partitioned.
 11. The system of claim 1 further comprising a time-to-frequency transform device that decomposes a time-based signal into the frequency spectrum before the frequency spectrum is partitioned.
 12. The system of claim 1 further comprising a Discrete Fourier Transform device that decomposes a time-based signal into the frequency spectrum before the frequency spectrum is partitioned.
 13. The system of claim 1 further comprising a Fast Fourier Transform device that decomposes a time-based signal into the frequency spectrum before the frequency spectrum is partitioned.
 14. The system of claim 1 where the first logic partitions the frequency spectrum of bins of real and imaginary data into sub-bands that match a frequency sensitivity of a human auditory system.
 15. The system of claim 1 where the first logic comprises a filter that model a human auditory system.
 16. The system of claim 1 where the first logic comprises an ERB filter.
 17. The system of claim 1 where the first logic comprises a rectangular-like bandwidth filter.
 18. The system of claim 1 where the first logic comprises a Mel filter.
 19. The system of claim 1 where the first logic applies a plurality of compression ratios based on a frequency range of the bins.
 20. The system of claim 1 where the first logic applies a plurality of lossy compression ratios.
 21. The system of claim 1 where the sub-bands comprise non-overlapping regions of the frequency spectrum of bins.
 22. The system of claim 1 where the sub-bands comprise overlapping regions of the frequency spectrum of bins.
 23. The system of claim 1 where the second logic comprises: computer program code that indexes each bin containing the designated peak magnitude in each sub-band; and computer program code that adjusts the phase of each bin containing the designated peak magnitude to the designated phase in each sub-band.
 24. The system of claim 23 where the adjustment comprises a vector rotation through a phase differential stored in the computer readable medium.
 25. The system of claim 1 where the computer readable medium comprises a distributed memory.
 26. The system of claim 1 further comprising an acoustic echo canceller that processes the frequency spectrum after the lossy compression and before the third logic provides the magnitude data and phase data.
 27. The system of claim 1 further comprising a noise canceller that processes the frequency spectrum after the lossy compression and before the third logic provides the magnitude data and phase data.
 28. The system of claim 1 further comprising a beam former that processes the frequency spectrum after the lossy compression and before the third logic provides the magnitude data and phase data.
 29. The system of claim 1 where the third logic comprises: computer program code that rotates each of the designated magnitudes in each sub-band to an original phase position; and computer program code that restores the bins that comprise the sub-bands rendered by the first logic by reconstructing and substantially maintaining the relative magnitudes and relative phases of the frequency spectrum partitioned by the first logic.
 30. A compression system comprising: a processor that executes a computer readable medium comprising: computer program code that partitions a frequency spectrum of bins of real and imaginary data into a smaller number of sub-bands through a first lossy compression; computer program code that executes a second lossy compression that compresses a designated peak magnitude of one bin in each sub-band that is representative of that sub-band and a designated phase of one bin in each sub-band that is representative of that sub-band; and computer program code that decompresses lossy compressed data rendered by the second lossy compression and reconstructs magnitude data and phase data not maintained by the second lossy compression based on original spectral relationships contained within the frequency spectrum.
 31. The system of claim 30 where the first lossy compression partitions the frequency spectrum of bins of real and imaginary data into sub-bands that match a frequency sensitivity of a human auditory system.
 32. The system of claim 30 where the first lossy compression applies a plurality of compression ratios based on a frequency range of the bins.
 33. The system of claim 30 where the second lossy compression comprises: computer program code that indexes each bin containing the designated peak magnitude in each sub-band; and computer program code that shifts the phase of each bin containing the designated peak magnitude to the designated phase in each sub-band.
 34. The system of claim 30 where the computer program code that decompresses the lossy compressed data rendered by the second lossy compression: phase adjusts each of the designated magnitudes in each sub-band to a substantially original phase position; and restores the bins that comprise the sub-bands rendered by the first logic by reconstructing and substantially maintaining the relative magnitudes and relative phases of the frequency spectrum in each sub-band with respect to phase adjusted designated magnitudes.
 35. A compression system comprising: a processor that executes a computer readable medium comprising: computer program code that partitions a frequency spectrum of bins of real and imaginary data into a smaller number of sub-bands through a first lossy compression; lossy compression means that compresses a designated peak magnitude of one bin in each sub-band and a designated phase of one bin in each sub-band; and computer program code that decompresses lossy compressed data rendered by the lossy compression means and reconstructs magnitude data and phase data not maintained by the lossy compression means based on original spectral relationships contained within the frequency spectrum.
 36. A lossless compression method comprising: partitioning a frequency spectrum of bins of real and imaginary data into a smaller number of sub-bands through a first lossy compression; compressing a designated peak magnitude of one bin in each sub-band that is representative of that sub-band and a designated phase of one bin in each sub-band that is representative of that sub-band by a second lossy compression; decompressing the lossy compressed data rendered by the second lossy compression; and reconstructing and substantially restoring magnitude data and phase data not maintained by the second lossy compression based on original spectral relationships contained within the frequency spectrum so that restored magnitude data and restored phase data maintain a relative magnitude and a relative phase of the frequency spectrum. 